Bearing fault diagnosis based on a domain adaptation model of convolutional neural network under multiple working conditions

被引:0
|
作者
Qian S. [1 ]
Qin D. [1 ]
Chen J. [1 ]
Yuan F. [1 ]
机构
[1] College of Mechanical and Power Engineering, Zhengzhou University, Zhengzhou
来源
关键词
convolutional neural network-domain adaptation (CNN-DA); deep learning; domain adaptation; fault diagnosis;
D O I
10.13465/j.cnki.jvs.2022.24.024
中图分类号
学科分类号
摘要
In view of the fact that the drop learning model trained under single working condition data cannot realize effective fault diagnosis under complex working conditions, a convolutional neural network-domain adaptation model (CNN-DA) was proposed. The convolution network was used to extract high-level features of fault vibration signals. Channel attention mechanism (CAM) was added to the network at the beginning and end to dynamically allocate the weights of feature channels and reduce the interference of invalid information. Combining with the domain adaptive method, the high-level fault features obtained by the feature extraction layer were adapted in the source and target domains. The domain adaptation module integrates the whole domain adaptation and the category domain adaptation, so that the data distribution of the features of the same fault tag in the two domains tends to coincide gradually. Finally the deep learning model was applied to a variety of different situations for training, and the training results and test results were obtained. Through experiments on data sets from different sources, the model was tested under various working conditions, and the results show that the proposed model can cope with the fault detection of rolling bearings under complex working conditions. © 2022 Chinese Vibration Engineering Society. All rights reserved.
引用
收藏
页码:192 / 200
页数:8
相关论文
共 16 条
  • [1] Lu W, Liang B, Yu C, Et al., Deep model based domain adaptation for fault diagnosis[J], IEEE Transactions on Industrial Electronics, 64, 3, pp. 2296-2305, (2017)
  • [2] Tsang S. J., Kwok I. W., Yang J. T., Domain adaptation via Transfer Component Analysis[J], IEEE Transactions on Neural Networks, 22, 2, pp. 199-210, (2011)
  • [3] Long M, Wang J, Ding G, Et al., Adaptation regularization: A general framework for transfer learning[J], IEEE Transactions on Knowledge & Data Engineering, 26, 5, pp. 1076-1089, (2014)
  • [4] Wang Q, Michau G, Fink O., Domian adaptive transfer learning for fault diagnosis[C], 2019 Prognostics and System Health Management Conference (PHM-Paris), (2019)
  • [5] Long Wen, Liang Gao, Xinyu Li, IEEE Transactions on Systems, 49, 1, pp. 136-144, (2019)
  • [6] Long Mingsheng, Cao Yue, Wang Jianmin, Jordan Michael, Learning transferable features with deep adaptation networks[C], Proceedings of the 32nd International Conference on Machine Learning, (2015)
  • [7] Gretton A, Borgwardt K M, Rasch M J, Et al., A kernel two-sample test[J], Journal of Machine Learning Research, 13, pp. 723-773, (2012)
  • [8] Li Y, Wang N, Shi J, Et al., Revisiting batch normalization for practical domain adaptation, Pattern Recognition, 80, pp. 109-117, (2016)
  • [9] WOO S, PARK J, LEE J Y, Et al., CBAM: Convolutional block attention module, 15th European Conference on Computer Vision, (2018)
  • [10] Lou X, Loparo K A., Bearing fault diagnosis based on wavelet transform and fuzzy inference[J], Mechanical Systems and Signal Processing (MSSP), 18, 5, pp. 1077-1095, (2004)